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ANALISIS CLUSTERING STUNTING DENGAN DISTANCE EUCLID Buaton, Realita
METHODIKA: Jurnal Teknik Informatika dan Sistem Informasi Vol. 10 No. 1 (2024): Volume 10 Nomor 1
Publisher : Universitas Methodist Indonesia

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Abstract

Entering the Industrial Revolution Era 4.0, human resources must be supported by healthy and intelligent human resources so that they can increase competitiveness. The world still faces the problem of hunger and malnutrition today. According to a Unicef report, many people suffer from malnutrition in the world. The World Health Organization (WHO) says that malnutrition is a dangerous threat to the health of the world's population. Stunting also has an impact in Indonesia, the prevalence of toddlers experiencing stunting in Indonesia is 24.4% in 2021. The solution created is to classify and cluster stunting so as to produce patterns that can be used as best practice to be transmitted to other affected areas. The algorithm used is Euclid, the Euclid algorithm is able to cluster stunting prevalence data into 3 clusters with a little category of 66%, a medium category of 28%, a lot of category of 6%. The results of the classification and clustering of the best stunting prevalence in cluster two with a small number, can be used as a source of accurate and updated information that can be used by the government in its efforts to optimize stunting handling in each district/city based on artificial intelligence which can provide patterns for handling and optimizing stunting. in each district/city. Malnutrition is estimated to be the main cause of 3.1 million child deaths every year. Therefore, efforts need to be made to minimize stunting by predicting stunting sufferers. The prediction results can be used as an early prevention effort.
ANALISIS CLUSTERING STUNTING DENGAN DISTANCE EUCLID Buaton, Realita
METHODIKA: Jurnal Teknik Informatika dan Sistem Informasi Vol. 10 No. 1 (2024): Volume 10 Nomor 1
Publisher : Universitas Methodist Indonesia

Show Abstract | Download Original | Original Source | Check in Google Scholar

Abstract

Entering the Industrial Revolution Era 4.0, human resources must be supported by healthy and intelligent human resources so that they can increase competitiveness. The world still faces the problem of hunger and malnutrition today. According to a Unicef report, many people suffer from malnutrition in the world. The World Health Organization (WHO) says that malnutrition is a dangerous threat to the health of the world's population. Stunting also has an impact in Indonesia, the prevalence of toddlers experiencing stunting in Indonesia is 24.4% in 2021. The solution created is to classify and cluster stunting so as to produce patterns that can be used as best practice to be transmitted to other affected areas. The algorithm used is Euclid, the Euclid algorithm is able to cluster stunting prevalence data into 3 clusters with a little category of 66%, a medium category of 28%, a lot of category of 6%. The results of the classification and clustering of the best stunting prevalence in cluster two with a small number, can be used as a source of accurate and updated information that can be used by the government in its efforts to optimize stunting handling in each district/city based on artificial intelligence which can provide patterns for handling and optimizing stunting. in each district/city. Malnutrition is estimated to be the main cause of 3.1 million child deaths every year. Therefore, efforts need to be made to minimize stunting by predicting stunting sufferers. The prediction results can be used as an early prevention effort.
PENGELOMPOKAN DATA KELUHAN PASIEN PADA LAYANAN RUMAH SAKIT BERDASARKAN KATEGORI MASALAH MENGGUNAKAN METODE CLUSTERING Anggita, Refa; Buaton, Realita; Br Sitepu, Kristina Annatasia
DEVICE : JOURNAL OF INFORMATION SYSTEM, COMPUTER SCIENCE AND INFORMATION TECHNOLOGY Vol 6, No 2: DESEMBER 2025
Publisher : Universitas Dharmawangsa

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.46576/device.v6i2.7432

Abstract

Penelitian ini membahas pengelompokan data keluhan pasien pada layanan RSU Artha Medica Binjai berdasarkan kategori masalah menggunakan algoritma K-Means Clustering. Data penelitian mencakup periode 2023–2024 dengan variabel umur pasien, kategori keluhan, dan kategori masalah. Proses pengolahan dilakukan menggunakan perangkat lunak Matlab R2014a, menghasilkan enam cluster dengan karakteristik berbeda. Hasil pengujian menunjukkan konfigurasi enam cluster memiliki nilai cluster variance terendah sebesar 4,5682, menandakan distribusi data paling kompak dibanding konfigurasi lainnya. Secara khusus, cluster keenam memiliki variance 5,0008 dengan Vmin 0,2472 dan Vmaks 10,3912, menunjukkan variasi yang terkendali dan sebaran data yang merapat ke pusat cluster. Temuan ini membuktikan bahwa penerapan K-Means Clustering dapat membantu rumah sakit dalam memahami pola keluhan pasien secara lebih akurat dan menjadi acuan strategis untuk peningkatan kualitas pelayanan.